bbbdaa82a4
## What changes were proposed in this pull request? Currently, some of PySpark tests sill assume the tests could be ran in Python 2.6 by importing `unittest2`. For instance: ```python if sys.version_info[:2] <= (2, 6): try: import unittest2 as unittest except ImportError: sys.stderr.write('Please install unittest2 to test with Python 2.6 or earlier') sys.exit(1) else: import unittest ``` While I am here, I removed some of unused imports and reordered imports per PEP 8. We officially dropped Python 2.6 support a while ago and started to discuss about Python 2 drop. It's better to remove them out. ## How was this patch tested? Manually tests, and existing tests via Jenkins. Closes #23077 from HyukjinKwon/SPARK-26105. Lead-authored-by: hyukjinkwon <gurwls223@apache.org> Co-authored-by: Bryan Cutler <cutlerb@gmail.com> Signed-off-by: hyukjinkwon <gurwls223@apache.org>
303 lines
13 KiB
Python
303 lines
13 KiB
Python
#
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# Licensed to the Apache Software Foundation (ASF) under one or more
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# contributor license agreements. See the NOTICE file distributed with
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# this work for additional information regarding copyright ownership.
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# The ASF licenses this file to You under the Apache License, Version 2.0
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# (the "License"); you may not use this file except in compliance with
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# the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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#
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import os
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import tempfile
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from shutil import rmtree
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import unittest
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from numpy import array, array_equal
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from py4j.protocol import Py4JJavaError
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from pyspark.mllib.fpm import FPGrowth
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from pyspark.mllib.recommendation import Rating
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from pyspark.mllib.regression import LabeledPoint
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from pyspark.testing.mllibutils import make_serializer, MLlibTestCase
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ser = make_serializer()
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class ListTests(MLlibTestCase):
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"""
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Test MLlib algorithms on plain lists, to make sure they're passed through
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as NumPy arrays.
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"""
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def test_bisecting_kmeans(self):
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from pyspark.mllib.clustering import BisectingKMeans
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data = array([0.0, 0.0, 1.0, 1.0, 9.0, 8.0, 8.0, 9.0]).reshape(4, 2)
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bskm = BisectingKMeans()
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model = bskm.train(self.sc.parallelize(data, 2), k=4)
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p = array([0.0, 0.0])
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rdd_p = self.sc.parallelize([p])
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self.assertEqual(model.predict(p), model.predict(rdd_p).first())
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self.assertEqual(model.computeCost(p), model.computeCost(rdd_p))
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self.assertEqual(model.k, len(model.clusterCenters))
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def test_kmeans(self):
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from pyspark.mllib.clustering import KMeans
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data = [
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[0, 1.1],
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[0, 1.2],
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[1.1, 0],
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[1.2, 0],
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]
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clusters = KMeans.train(self.sc.parallelize(data), 2, initializationMode="k-means||",
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initializationSteps=7, epsilon=1e-4)
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self.assertEqual(clusters.predict(data[0]), clusters.predict(data[1]))
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self.assertEqual(clusters.predict(data[2]), clusters.predict(data[3]))
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def test_kmeans_deterministic(self):
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from pyspark.mllib.clustering import KMeans
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X = range(0, 100, 10)
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Y = range(0, 100, 10)
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data = [[x, y] for x, y in zip(X, Y)]
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clusters1 = KMeans.train(self.sc.parallelize(data),
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3, initializationMode="k-means||",
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seed=42, initializationSteps=7, epsilon=1e-4)
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clusters2 = KMeans.train(self.sc.parallelize(data),
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3, initializationMode="k-means||",
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seed=42, initializationSteps=7, epsilon=1e-4)
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centers1 = clusters1.centers
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centers2 = clusters2.centers
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for c1, c2 in zip(centers1, centers2):
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# TODO: Allow small numeric difference.
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self.assertTrue(array_equal(c1, c2))
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def test_gmm(self):
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from pyspark.mllib.clustering import GaussianMixture
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data = self.sc.parallelize([
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[1, 2],
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[8, 9],
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[-4, -3],
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[-6, -7],
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])
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clusters = GaussianMixture.train(data, 2, convergenceTol=0.001,
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maxIterations=10, seed=1)
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labels = clusters.predict(data).collect()
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self.assertEqual(labels[0], labels[1])
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self.assertEqual(labels[2], labels[3])
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def test_gmm_deterministic(self):
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from pyspark.mllib.clustering import GaussianMixture
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x = range(0, 100, 10)
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y = range(0, 100, 10)
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data = self.sc.parallelize([[a, b] for a, b in zip(x, y)])
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clusters1 = GaussianMixture.train(data, 5, convergenceTol=0.001,
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maxIterations=10, seed=63)
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clusters2 = GaussianMixture.train(data, 5, convergenceTol=0.001,
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maxIterations=10, seed=63)
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for c1, c2 in zip(clusters1.weights, clusters2.weights):
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self.assertEqual(round(c1, 7), round(c2, 7))
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def test_gmm_with_initial_model(self):
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from pyspark.mllib.clustering import GaussianMixture
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data = self.sc.parallelize([
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(-10, -5), (-9, -4), (10, 5), (9, 4)
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])
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gmm1 = GaussianMixture.train(data, 2, convergenceTol=0.001,
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maxIterations=10, seed=63)
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gmm2 = GaussianMixture.train(data, 2, convergenceTol=0.001,
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maxIterations=10, seed=63, initialModel=gmm1)
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self.assertAlmostEqual((gmm1.weights - gmm2.weights).sum(), 0.0)
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def test_classification(self):
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from pyspark.mllib.classification import LogisticRegressionWithSGD, SVMWithSGD, NaiveBayes
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from pyspark.mllib.tree import DecisionTree, DecisionTreeModel, RandomForest, \
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RandomForestModel, GradientBoostedTrees, GradientBoostedTreesModel
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data = [
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LabeledPoint(0.0, [1, 0, 0]),
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LabeledPoint(1.0, [0, 1, 1]),
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LabeledPoint(0.0, [2, 0, 0]),
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LabeledPoint(1.0, [0, 2, 1])
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]
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rdd = self.sc.parallelize(data)
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features = [p.features.tolist() for p in data]
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temp_dir = tempfile.mkdtemp()
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lr_model = LogisticRegressionWithSGD.train(rdd, iterations=10)
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self.assertTrue(lr_model.predict(features[0]) <= 0)
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self.assertTrue(lr_model.predict(features[1]) > 0)
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self.assertTrue(lr_model.predict(features[2]) <= 0)
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self.assertTrue(lr_model.predict(features[3]) > 0)
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svm_model = SVMWithSGD.train(rdd, iterations=10)
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self.assertTrue(svm_model.predict(features[0]) <= 0)
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self.assertTrue(svm_model.predict(features[1]) > 0)
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self.assertTrue(svm_model.predict(features[2]) <= 0)
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self.assertTrue(svm_model.predict(features[3]) > 0)
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nb_model = NaiveBayes.train(rdd)
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self.assertTrue(nb_model.predict(features[0]) <= 0)
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self.assertTrue(nb_model.predict(features[1]) > 0)
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self.assertTrue(nb_model.predict(features[2]) <= 0)
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self.assertTrue(nb_model.predict(features[3]) > 0)
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categoricalFeaturesInfo = {0: 3} # feature 0 has 3 categories
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dt_model = DecisionTree.trainClassifier(
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rdd, numClasses=2, categoricalFeaturesInfo=categoricalFeaturesInfo, maxBins=4)
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self.assertTrue(dt_model.predict(features[0]) <= 0)
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self.assertTrue(dt_model.predict(features[1]) > 0)
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self.assertTrue(dt_model.predict(features[2]) <= 0)
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self.assertTrue(dt_model.predict(features[3]) > 0)
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dt_model_dir = os.path.join(temp_dir, "dt")
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dt_model.save(self.sc, dt_model_dir)
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same_dt_model = DecisionTreeModel.load(self.sc, dt_model_dir)
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self.assertEqual(same_dt_model.toDebugString(), dt_model.toDebugString())
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rf_model = RandomForest.trainClassifier(
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rdd, numClasses=2, categoricalFeaturesInfo=categoricalFeaturesInfo, numTrees=10,
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maxBins=4, seed=1)
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self.assertTrue(rf_model.predict(features[0]) <= 0)
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self.assertTrue(rf_model.predict(features[1]) > 0)
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self.assertTrue(rf_model.predict(features[2]) <= 0)
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self.assertTrue(rf_model.predict(features[3]) > 0)
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rf_model_dir = os.path.join(temp_dir, "rf")
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rf_model.save(self.sc, rf_model_dir)
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same_rf_model = RandomForestModel.load(self.sc, rf_model_dir)
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self.assertEqual(same_rf_model.toDebugString(), rf_model.toDebugString())
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gbt_model = GradientBoostedTrees.trainClassifier(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, numIterations=4)
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self.assertTrue(gbt_model.predict(features[0]) <= 0)
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self.assertTrue(gbt_model.predict(features[1]) > 0)
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self.assertTrue(gbt_model.predict(features[2]) <= 0)
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self.assertTrue(gbt_model.predict(features[3]) > 0)
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gbt_model_dir = os.path.join(temp_dir, "gbt")
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gbt_model.save(self.sc, gbt_model_dir)
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same_gbt_model = GradientBoostedTreesModel.load(self.sc, gbt_model_dir)
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self.assertEqual(same_gbt_model.toDebugString(), gbt_model.toDebugString())
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try:
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rmtree(temp_dir)
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except OSError:
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pass
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def test_regression(self):
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from pyspark.mllib.regression import LinearRegressionWithSGD, LassoWithSGD, \
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RidgeRegressionWithSGD
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from pyspark.mllib.tree import DecisionTree, RandomForest, GradientBoostedTrees
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data = [
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LabeledPoint(-1.0, [0, -1]),
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LabeledPoint(1.0, [0, 1]),
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LabeledPoint(-1.0, [0, -2]),
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LabeledPoint(1.0, [0, 2])
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]
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rdd = self.sc.parallelize(data)
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features = [p.features.tolist() for p in data]
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lr_model = LinearRegressionWithSGD.train(rdd, iterations=10)
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self.assertTrue(lr_model.predict(features[0]) <= 0)
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self.assertTrue(lr_model.predict(features[1]) > 0)
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self.assertTrue(lr_model.predict(features[2]) <= 0)
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self.assertTrue(lr_model.predict(features[3]) > 0)
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lasso_model = LassoWithSGD.train(rdd, iterations=10)
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self.assertTrue(lasso_model.predict(features[0]) <= 0)
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self.assertTrue(lasso_model.predict(features[1]) > 0)
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self.assertTrue(lasso_model.predict(features[2]) <= 0)
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self.assertTrue(lasso_model.predict(features[3]) > 0)
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rr_model = RidgeRegressionWithSGD.train(rdd, iterations=10)
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self.assertTrue(rr_model.predict(features[0]) <= 0)
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self.assertTrue(rr_model.predict(features[1]) > 0)
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self.assertTrue(rr_model.predict(features[2]) <= 0)
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self.assertTrue(rr_model.predict(features[3]) > 0)
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categoricalFeaturesInfo = {0: 2} # feature 0 has 2 categories
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dt_model = DecisionTree.trainRegressor(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, maxBins=4)
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self.assertTrue(dt_model.predict(features[0]) <= 0)
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self.assertTrue(dt_model.predict(features[1]) > 0)
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self.assertTrue(dt_model.predict(features[2]) <= 0)
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self.assertTrue(dt_model.predict(features[3]) > 0)
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rf_model = RandomForest.trainRegressor(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, numTrees=10, maxBins=4, seed=1)
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self.assertTrue(rf_model.predict(features[0]) <= 0)
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self.assertTrue(rf_model.predict(features[1]) > 0)
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self.assertTrue(rf_model.predict(features[2]) <= 0)
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self.assertTrue(rf_model.predict(features[3]) > 0)
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gbt_model = GradientBoostedTrees.trainRegressor(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, numIterations=4)
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self.assertTrue(gbt_model.predict(features[0]) <= 0)
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self.assertTrue(gbt_model.predict(features[1]) > 0)
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self.assertTrue(gbt_model.predict(features[2]) <= 0)
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self.assertTrue(gbt_model.predict(features[3]) > 0)
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try:
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LinearRegressionWithSGD.train(rdd, initialWeights=array([1.0, 1.0]), iterations=10)
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LassoWithSGD.train(rdd, initialWeights=array([1.0, 1.0]), iterations=10)
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RidgeRegressionWithSGD.train(rdd, initialWeights=array([1.0, 1.0]), iterations=10)
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except ValueError:
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self.fail()
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# Verify that maxBins is being passed through
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GradientBoostedTrees.trainRegressor(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, numIterations=4, maxBins=32)
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with self.assertRaises(Exception) as cm:
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GradientBoostedTrees.trainRegressor(
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rdd, categoricalFeaturesInfo=categoricalFeaturesInfo, numIterations=4, maxBins=1)
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class ALSTests(MLlibTestCase):
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def test_als_ratings_serialize(self):
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r = Rating(7, 1123, 3.14)
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jr = self.sc._jvm.org.apache.spark.mllib.api.python.SerDe.loads(bytearray(ser.dumps(r)))
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nr = ser.loads(bytes(self.sc._jvm.org.apache.spark.mllib.api.python.SerDe.dumps(jr)))
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self.assertEqual(r.user, nr.user)
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self.assertEqual(r.product, nr.product)
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self.assertAlmostEqual(r.rating, nr.rating, 2)
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def test_als_ratings_id_long_error(self):
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r = Rating(1205640308657491975, 50233468418, 1.0)
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# rating user id exceeds max int value, should fail when pickled
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self.assertRaises(Py4JJavaError, self.sc._jvm.org.apache.spark.mllib.api.python.SerDe.loads,
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bytearray(ser.dumps(r)))
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class FPGrowthTest(MLlibTestCase):
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def test_fpgrowth(self):
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data = [["a", "b", "c"], ["a", "b", "d", "e"], ["a", "c", "e"], ["a", "c", "f"]]
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rdd = self.sc.parallelize(data, 2)
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model1 = FPGrowth.train(rdd, 0.6, 2)
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# use default data partition number when numPartitions is not specified
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model2 = FPGrowth.train(rdd, 0.6)
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self.assertEqual(sorted(model1.freqItemsets().collect()),
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sorted(model2.freqItemsets().collect()))
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if __name__ == "__main__":
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from pyspark.mllib.tests.test_algorithms import *
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try:
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import xmlrunner
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testRunner = xmlrunner.XMLTestRunner(output='target/test-reports')
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except ImportError:
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testRunner = None
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unittest.main(testRunner=testRunner, verbosity=2)
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